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Multi-label Feature Selection for Long-term Electrocardiogram Signals

机译:长期心电图信号的多标签特征选择

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摘要

Arrhythmia is a kind of cardiovascular disease that seriously threats human health, and intelligent analysis of electrocardiogram (ECG) is an effective method for the early prevention and precise treatment to arrhythmia. In clinical ECG databases, it is common to see the multi-label phenomenon that one patient would be labelled with multiple types of arrhythmia. However, the current research is mainly to use the multi-class methods for dealing with the problem of multi-label, ignoring the correlations between diseases and causing information loss. Therefore, this paper aims to propose a multi-label feature selection (MLFS) method based on ECG and design a novel evaluation criterion based on kernelized fuzzy rough sets so as to choose the optimal feature subset and optimize ECG feature space. Through sufficient experiments to prove the feasibility of our methods, we obtain the optimal feature subset composed of 23 ECG features. For the six evaluation criterions of multi-label learning, Average Precision is 0.8053, Hamming Loss is 0.1063, Ranking Loss is 0.1366, One-error is 0.2021, Coverage is 0.4018, and Micro-F1 is 0.5874. The outcome presents great superiority to the current algorithms of MLFS. This study is a prerequisite for implementing big data ECG classification diagnosis and disease modeling.
机译:心律失常是一种严重威胁人类健康的心血管疾病,对心电图(ECG)进行智能分析是一种早期预防和精确治疗心律失常的有效方法。在临床心电图数据库中,通常会看到多标签现象,即一名患者会被标记为多种类型的心律失常。然而,当前的研究主要是利用多类方法来解决多标签问题,而忽略了疾病之间的相关性并造成信息丢失。因此,本文旨在提出一种基于心电图的多标签特征选择(MLFS)方法,并设计一种基于核化模糊粗糙集的新评价准则,以选择最优特征子集并优化心电图特征空间。通过足够的实验证明我们方法的可行性,我们获得了由23个ECG特征组成的最佳特征子集。对于多标签学习的六个评估标准,平均精度为0.8053,汉明损失为0.1063,秩次损失为0.1366,一个错误为0.2021,覆盖率为0.4018,Micro-F1为0.5874。结果表明,它比当前的MLFS算法具有更大的优势。这项研究是实施大数据ECG分类诊断和疾病建模的前提。

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